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US Patent 11366434 Adaptive and interchangeable neural networks

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Is a
Patent
Patent

Patent attributes

Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
11366434
Patent Inventor Names
Kenneth Austin Abeloe14
Date of Patent
June 21, 2022
Patent Application Number
16848683
Date Filed
April 14, 2020
Patent Citations
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US Patent 10347127 Driving mode adjustment
1
‌
US Patent 10429486 Method and system for learned communications signal shaping
2
‌
US Patent 10451712 Radar data collection and labeling for machine learning
3
‌
US Patent 10444754 Remote assistance for an autonomous vehicle in low confidence situations
‌
US Patent 10581469 Machine learning-based nonlinear pre-distortion system
‌
US Patent 10531415 Learning communication systems using channel approximation
‌
US Patent 10200875 Placement and scheduling of radio signal processing dataflow operations
Patent Citations Received
‌
US Patent 12118813 Continuous learning for document processing and analysis
10
‌
US Patent 11936406 Machine-learning based analysis, prediction, and response based on electromagnetic waveforms
11
‌
US Patent 12028095 Machine-learning based analysis and response to electromagnetic waveforms
12
‌
US Patent 12118816 Continuous learning for document processing and analysis
13
Patent Primary Examiner
‌
Calvin Cheung
CPC Code
‌
G06K 9/6227
‌
G06N 3/08
‌
G06V 10/757
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G06N 20/00

Methods and systems that allow neural network systems to maintain or increase operational accuracy while being able to operate in various settings. A set of training data is collected over each of at least two different settings. Each setting has a set of characteristics. Examples of setting characteristic types can be time, geographical location, and/or weather condition. Each set of training data is used to train a neural network resulting in a set of coefficients. For each setting, the setting characteristics are associated with the corresponding neural network having the resulting coefficients and neural network structure. A neural network, having the coefficients and neural network structure resulted after training using the training data collected over a setting, would yield optimal results when operated in/under the setting. A database management system can store information relating to, for example, the setting characteristics, neural network coefficients, and/or neural network structures.

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